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Fast diagnosing of pediatric respiratory diseases by using high speed neural networks

机译:高速神经网络快速诊断儿科呼吸系统疾病

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In this paper, a new fast neural model for testing massive volume of medical data is presented. The idea is to accelerate the process of detecting and classifying pediatric respiratory diseases by using neural networks. This is done by applying cross correlation between the input patterns and the input weights of neural networks in the frequency domain rather than time domain. Furthermore, such model is very useful for understanding the internal relation between the medical patterns. In addition, the input patterns are collected in one vector and manipulated as a one pattern. Moreover, before training neural networks, rough sets are used to reduce the length of the feature input vector. The most important feature elements are used to train the neural networks. The reduced input medical patterns are classified to one of eight diseases. Simulation results confirm the theoretical considerations as 98% of all tested cases are classified correctly. The presented model can be applied successfully for any other classification application.
机译:本文提出了一种用于测试大量医学数据的新的快速神经模型。该想法是加速通过使用神经网络来检测和分类小儿呼吸疾病的过程。这是通过在频域中的输入模式和神经网络的输入权重之间应用跨相关性而不是时​​域来完成的。此外,这种模型对于理解医学模式之间的内部关系非常有用。另外,输入图案在一个向量中收集并作为一种图案操纵。此外,在训练神经网络之前,用于减小特征输入向量的长度的粗糙集。最重要的特征元素用于训练神经网络。减少的输入医学模式被分类为八种疾病之一。仿真结果证实理论考虑因素的所有测试案例的98%是正确的。呈现的模型可以成功应用于任何其他分类应用程序。

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